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  4. Targeted Adversarial Attacks on Wind Power Forecasts
 
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2024
Journal Article
Title

Targeted Adversarial Attacks on Wind Power Forecasts

Abstract
In recent years, researchers proposed a variety of deep learning models for wind power forecasting. These models predict the wind power generation of wind farms or entire regions more accurately than traditional machine learning algorithms or physical models. However, latest research has shown that deep learning models can often be manipulated by adversarial attacks. Since wind power forecasts are essential for the stability of modern power systems, it is important to protect them from this threat. In this work, we investigate the vulnerability of two different forecasting models to targeted, semi-targeted, and untargeted adversarial attacks. We consider a long short-term memory (LSTM) network for predicting the power generation of individual wind farms and a convolutional neural network (CNN) for forecasting the wind power generation throughout Germany. Moreover, we propose the Total Adversarial Robustness Score (TARS), an evaluation metric for quantifying the robustness of regression models to targeted and semi-targeted adversarial attacks. It assesses the impact of attacks on the model’s performance, as well as the extent to which the attacker’s goal was achieved, by assigning a score between 0 (very vulnerable) and 1 (very robust). In our experiments, the LSTM forecasting model was fairly robust and achieved a TARS value of over 0.78 for all adversarial attacks investigated. The CNN forecasting model only achieved TARS values below 0.10 when trained ordinarily, and was thus very vulnerable. Yet, its robustness could be significantly improved by adversarial training, which always resulted in a TARS above 0.46.
Author(s)
Heinrich, René Patrick Gerald
Fraunhofer-Institut für Energiewirtschaft und Energiesystemtechnik IEE  
Scholz, Christoph
Fraunhofer-Institut für Energiewirtschaft und Energiesystemtechnik IEE  
Vogt, Stephan  
Fraunhofer-Institut für Energiewirtschaft und Energiesystemtechnik IEE  
Lehna, Malte
Fraunhofer-Institut für Energiewirtschaft und Energiesystemtechnik IEE  
Journal
Machine learning  
Project(s)
KI-basierte Erkennung und resiliente Vermeidung von Cyber-Angriffen und technischen Störungen bei virtuellen Kraftwerken und dezentralen Energieanlagen; Teilvorhaben: KI-basierte Verfahren zur Erkennung von Angriffen im Kontext von virtuellen Kraftwerken  
Funder
Bundesministerium für Wirtschaft und Klimaschutz  
Open Access
DOI
10.1007/s10994-023-06396-9
Additional link
Full text
Language
English
Fraunhofer-Institut für Energiewirtschaft und Energiesystemtechnik IEE  
Keyword(s)
  • Adversarial Machine Learning

  • Windpower Forecasting

  • Robustness Evaluation

  • Adversarial Training

  • Time Series Forecasting

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